The 2nd International Conference on Artificial Intelligence Systems

Event Dates

May 12, 2026 - May 15, 2026

Location

San Antonio, USA.

Submission Deadline

Jan 31, 2026

Call for Papers:

Artificial Intelligence (AI) systems are computational frameworks designed to perform tasks that typically require human intelligence, such as learning, reasoning, problem-solving, perception, and decision-making. These systems integrate algorithms, data, and computing power to enable machines to adapt and improve their performance over time. AI systems encompass a wide range of technologies, including machine learning, natural language processing, computer vision, and autonomous robotics, and they are increasingly applied in domains such as healthcare, finance, cybersecurity, transportation, and smart cities. As they continue to evolve, AI systems are not only transforming industries and enhancing human capabilities but also raising important considerations around ethics, transparency, and trustworthiness.

The International Conference on Artificial Intelligence Systems (AIS 2026) aims to bring together leading researchers, academics, and practitioners from around the world to share their latest findings, innovations, and applications in Artificial Intelligence and intelligent systems. AIS 2026 provides a premier interdisciplinary platform for presenting advances and exchanging insights on the theoretical foundations, cutting-edge technologies, and real-world implementations of AI. AIS 2026 will feature keynote talks, technical paper sessions, workshops, and tutorials covering a wide range of AI topics. We invite submissions of high-quality research papers describing original and unpublished results in all areas of Artificial Intelligence Systems. addresses the use of advanced intelligent systems in providing cybersecurity solutions in many fields, and the challenges, approaches, and future directions. We invite the submission of original papers on all topics related to Intelligent Systems with special interest in but not limited to:

Machine Learning and Data-Driven Systems

Deep Learning, Representation Learning, and Transfer Learning

Reinforcement Learning and Adaptive Systems

Federated, Distributed, and Edge AI

Reinforcement Learning and Autonomous Agents

Federated Learning and Distributed AI Systems

AI Applications and Intelligent Systems

Scalable and High-Performance AI Architectures

Edge AI, Cloud AI, and Embedded Intelligence

Optimization and Resource-Aware AI Systems

Natural Language and Multimodal AI

Natural Language Processing and Understanding

Speech Recognition and Conversational Agents

Multimodal Learning and Vision-Language Systems

Knowledge Representation and Reasoning

Data Mining, Knowledge Discovery, and Information Retrieval

Automated Planning and Scheduling

Generative AI, Foundation Models, and Large Language Models

Generative AI and Large Language Models (LLMs)

Explainable and Responsible AI

Federated, Distributed, and Edge AI

Reinforcement Learning and Autonomous Agents

AI for Decision Support Systems

Natural Language Processing and Computational Linguistics

Multilingual and Low-Resource Language Models

Human-Computer Interaction (HCI) and Assistive Technologies

Conversational AI and Dialogue Systems

Computational Language and Human-Centered Systems

Prompt Engineering and Fine-tuning

Multimodal LLMs

Agentic AI

Computer Vision, Image and Video Processing

Image and Video Understanding

Object Detection, Recognition, and Tracking

Multimodal Learning and Vision-Language Systems

3D Vision and Scene Understanding

Affective Computing and Emotion Recognition

Artificial Intelligence Applications

Robotics and Autonomous Systems

AI for Healthcare, Smart Cities, and Transportation

AI in Finance, Education, and Industry 4.0

AI for Cybersecurity, Privacy, and Digital Trust

AI Infrastructure and Engineering

Recommender Systems and Personalization

AI for Social Good and Humanitarian Applications

Emerging Trends and Future Directions in AI Systems

Artificial Intelligence Security

Responsible and Trustworthy AI

Explainable AI and Transparency

Ethical and Societal Implications of AI

AI Safety, Robustness, and Security

AI Policy, Regulation, and Governance